Author:
Trilla-Fuertes Lucía,Gámez-Pozo Angelo,Prado-Vázquez Guillermo,Zapater-Moros Andrea,Díaz-Almirón Mariana,Arevalillo Jorge M,Ferrer-Gómez María,Navarro Hilario,Maín Paloma,Espinosa Enrique,Pinto Álvaro,Fresno Vara Juan Ángel
Abstract
AbstractBackgroundMuscle-invasive bladder tumors are associated with high risk of relapse and metastasis even after neoadjuvant chemotherapy and radical cystectomy. Therefore, further therapeutic options are needed and molecular characterization of the disease may help to identify new targets.ObjectiveThe aim of this work is to characterize muscle-invasive bladder tumors at molecular levels using computational analyses.Design, Settings and ParticipantsThe TCGA cohort of muscle-invasive bladder cancer patients was used to describe these tumors.Outcome Measurements and Statistical AnalysisProbabilistic graphical models, layer analyses based on sparse k-means coupled with Consensus Cluster, and Flux Balance Analysis were applied to characterize muscle-invasive bladder tumors at functional level.ResultsLuminal and Basal groups were identified, and an immune molecular layer with independent value was also described. Luminal tumors had decreased activity in the nodes of epidermis development and extracellular matrix, and increased activity in the node of steroid metabolism leading to a higher expression of androgen receptor.This fact points to androgen receptor as a therapeutic target in this group. Basal tumors were highly proliferative according to Flux Balance Analysis, which make these tumors good candidates for neoadjuvant chemotherapy. Immune-high group had higher expression of immune biomarkers, suggesting that this group may benefit from immune therapy.ConclusionsOur approach, based on layer analyses, established a Luminal group candidate for androgen receptor inhibitor therapy, a proliferative Basal group which seems to be a good candidate for chemotherapy, and an immune-high group candidate for immunotherapy.Patient SummaryMuscle-invasive bladder cancer has a poor prognosis in spite of appropriate therapy. Therefore, it is still necessary to characterize these tumors to propose new therapeutic targets. In this work we used computational analyses to characterize these tumors and propose treatments.
Publisher
Cold Spring Harbor Laboratory